Reinforcement Learning, Bit by Bit

Xiuyuan Lu, Benjamin Van Roy, V. Dwaracherla, M. Ibrahimi, Ian Osband, Zheng Wen
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引用次数: 51

Abstract

Reinforcement learning agents have demonstrated remarkable achievements in simulated environments. Data efficiency poses an impediment to carrying this success over to real environments. The design of data-efficient agents calls for a deeper understanding of information acquisition and representation. We discuss concepts and regret analysis that together offer principled guidance. This line of thinking sheds light on questions of what information to seek, how to seek that information, and what information to retain. To illustrate concepts, we design simple agents that build on them and present computational results that highlight data efficiency.
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一点一点的强化学习
强化学习智能体在模拟环境中已经取得了显著的成就。数据效率阻碍了将这种成功应用到实际环境中。数据高效代理的设计要求对信息获取和表示有更深的理解。我们讨论概念和遗憾分析,共同提供原则性指导。这种思路揭示了要寻找什么信息、如何寻找信息以及要保留什么信息等问题。为了说明概念,我们设计了基于概念的简单代理,并展示了突出数据效率的计算结果。
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